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Efficient Large-Scale Fleet Management via Multi-Agent Deep Reinforcement Learning

机译:通过多智能经纪深度加强学习高效的大型车队管理

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摘要

Large-scale online ride-sharing platforms have substantially trans- formed our lives by reallocating transportation resources to alleviate traffic congestion and promote transportation efficiency. An efficient fleet management strategy not only can significantly improve the utilization of transportation resources but also increase the revenue and customer satisfaction. It is a challenging task to design an effective fleet management strategy that can adapt to an environment involving complex dynamics between demand and supply. Existing studies usually work on a simplified problem set- ting that can hardly capture the complicated stochastic demand- supply variations in high-dimensional space. In this paper we pro- pose to tackle the large-scale fleet management problem using reinforcement learning, and propose a contextual multi-agent reinforcement learning framework including two concrete algorithms, namely contextual deep Q-learning and contextual multi-agent actor- critic, to achieve explicit coordination among a large number of agents adaptive to different contexts. We show significant improvements of the proposed framework over state-of-the-art approaches through extensive empirical studies.
机译:大规模在线乘车共享平台通过重新分配运输资源来缓解交通拥堵和促进运输效率,大大转型。高效的舰队管理战略不仅可以显着提高运输资源的利用,而且会增加收入和客户满意度。设计有效的舰队管理策略是一个具有挑战性的任务,可以适应涉及需求和供应之间复杂动态的环境。现有研究通常在简化的问题设置上工作,这可能几乎无法捕获高维空间的复杂随机需求差异。在本文中,我们使用强化学习来解决大规模的车队管理问题,并提出了一种上下文的多智能经纪增强学习框架,包括两个具体算法,即背景深度Q学习和上下文多功能演员 - 评论家,在适应不同环境的大量代理人之间实现明确的协调。我们通过广泛的实证研究表明,通过最先进的方法展示了拟议框架的显着改进。

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